The supervised learning approach to learn text classifiers usually requires a large number of labelled training examples. However, labelling is often manually performed, making this process costly and time-consuming. Multiview semi-supervised learning algorithm have the potential of reducing the needof expensive labelled data whenever only a small set of labelled examples is available. In addition, these algorithms require a partitioned description of each example into distinct views. In this work we propose a method where these views can easily be obtained using simple and composed words from text data. Experimental results confirm the suitability of our proposal.